Echo Chambers, Filter Bubbles, and Selective Exposure: Media Use and Opinion Formation in Polarized Digital Spaces
DOI:
https://doi.org/10.63544/ijss.v5i1.226Keywords:
Echo Chambers, Filter Bubbles, Opinion Formation, Selective Exposure, Social MediaAbstract
The proliferation of digital media platforms has fundamentally transformed the ways individuals consume information and form opinions. This study examined the role of echo chambers, filter bubbles, and selective exposure in shaping user perceptions and opinion polarization within online environments. Using a quantitative survey approach, data were collected from 450 active social media users to investigate patterns of content consumption, perceived algorithmic influence, and the relationship between selective exposure and opinion formation. Findings indicated that a significant majority of participants were frequently exposed to ideologically consonant content, demonstrating the prevalence of echo chambers and algorithmically curated filter bubbles. High levels of selective exposure were positively associated with increased opinion polarization, suggesting that repeated engagement with like-minded content reinforced existing beliefs and limited exposure to divergent perspectives. Perceived algorithmic influence varied among users, highlighting the moderating role of human agency in navigating content personalization. The study concluded that both structural mechanisms, such as algorithmic recommendations, and behavioural patterns, such as selective exposure, jointly contributed to ideological reinforcement in digital spaces. Implications for media literacy, platform design, and policy interventions were discussed, emphasizing the importance of fostering informational diversity to mitigate polarization. This research provides empirical evidence on the dynamics of opinion formation in digitally mediated spaces and offers guidance for strategies aimed at promoting inclusive and balanced discourse in online communities.
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